基于支持向量机和径向基函数方法的强风暴单体分类

L. Ramirez, W. Pedrycz, N. Pizzi
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引用次数: 10

摘要

气象体积数据用于探测雷暴,雷暴是夏季大多数恶劣天气的原因。有一些系统可以将体积数据转换成一组衍生产品。基于这些衍生的特征,这项工作比较了三种分类器,以确定哪种方法可以最好地分类来自加拿大环境部的风暴细胞数据集。比较的标准是在一个测试集上分类的准确性。比较的三种方法是支持向量机(SVM)分类器,采用径向基函数(RBF)核;经典的RBF分类器,使用正交最小二乘法找到中心;混合RBF,其中心与使用支持向量机方法找到的支持向量相对应。结果表明,SVM方法在风暴单体分类精度方面是最好的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Severe storm cell classification using support vector machines and radial basis function approaches
Meteorological volumetric data are used to detect thunderstorms that are the cause of most of the summer severe weathers. There are systems that may convert the volumetric data into a set of derived products. Based on these derived features, this work compares three classifiers to determine which approach will best classify a storm cell data set coming from Environment Canada. The criterion for comparison is the accuracy in the classification over a testing set. The three approaches compared are the support vector machine (SVM) classifier, with radial basis function (RBF) kernel; the classic RBF classifier, with the centres found using the orthogonal least squares approach; and the hybrid RBF, with the centres corresponding to the support vectors found using the SVM approach. The results show that the SVM approach is the best of these approaches, in terms of accuracy, for the storm cell classification.
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